首页> 外文期刊>Journal of Geophysical Research. Biogeosciences >A stochastic modeling approach for characterizing the spatial structure of L band radiobrightness temperature imagery - art. no. 8862
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A stochastic modeling approach for characterizing the spatial structure of L band radiobrightness temperature imagery - art. no. 8862

机译:表征L波段辐射亮度温度图像空间结构的随机建模方法-艺术。没有。 8862

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This study focuses on the statistical characterization of the spatial structure of L band microwave radiobrightness temperature fields retrieved during the Southern Great Plains hydrology experiment of 1997 (SGP97). It is found that the radiobrightness temperature observations of interest can be considered nonstationary scaling processes that exhibit persistence or long memory. This implies that the spatial dependence of observations decays very slowly at large separation distances such that models with exponentially decaying autocorrelation (e.g., autoregressive moving average models or exponential models commonly used in geostatistics) are not appropriate. It is further shown that the radiobrightness temperature fields retrieved during SGP97 exhibit distinct scaling behaviors along the horizontal (west to east) and vertical (south to north) directions. A two-dimensional implementation of the fractionally integrated moving average (FIMA) time series model is shown capable of capturing the spatial autocovariance structure of the observations. The results presented evince that the FIMA paradigm allows for robust estimation of distinct scaling exponents along the horizontal and vertical directions both in stationary and nonstationary situations. Comparisons to alternative heuristic methods for determining the scaling exponent(s) further demonstrate that FIMA models yield estimates with superior accuracy. Additionally, within the FIMA framework it is possible to jointly and accurately model the spatial dependence of radiobrightness temperature for observations separated by short and long distances. [References: 35]
机译:这项研究的重点是在1997年南部大平原水文实验(SGP97)中获得的L波段微波辐射亮度温度场的空间结构的统计特征。发现感兴趣的放射亮度温度观测可以被视为表现出持久性或长记忆的非平稳缩放过程。这意味着观测值的空间依赖性在较大的分隔距离处衰减非常缓慢,因此自指数呈指数衰减的模型(例如,地统计学中常用的自回归移动平均模型或指数模型)不合适。进一步显示,在SGP97期间检索到的射线亮度温度场沿水平(西向东)和垂直(南向北)方向表现出明显的缩放行为。显示了分数积分移动平均值(FIMA)时间序列模型的二维实现,能够捕获观测值的空间自协方差结构。结果表明,FIMA范式允许在平稳和非平稳情况下沿水平和垂直方向对不同的缩放指数进行稳健的估计。与用于确定缩放指数的其他启发式方法的比较进一步表明,FIMA模型可产生具有更高准确性的估计值。另外,在FIMA框架内,有可能联合并准确地对以短距离和长距离分隔的观测结果的辐射亮度温度的空间依赖性进行建模。 [参考:35]

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